| Literature DB >> 31337074 |
Abstract
Localization is a key-enabling technology for many applications in underwater wireless sensor networks. Traditional approaches for received signal strength (RSS)-based localization often require uniform distribution for anchor nodes and suffer from poor estimates according to unpredictable and uncontrollable noise conditions. In this paper, we establish an RSS-based localization scheme to determine the location of an unknown normal sensor from a certain measurement set of potential anchor nodes. First, we present a practical path loss model for wireless communication in underwater acoustic environments, where anchor nodes are deployed in a random circumstance. For a given area of interest, the RSS data collection is performed dynamically, where the measurement noises and the correlation among them are taken into account. For a pair of transmitter and receiver, we approximate the geometry distance between them according to a linear regression model. Thus, we can obtain a quick access for the range information, while keeping the error, the communication head and the response time low. We also present a method to correct noises in the distance estimate. Simulation results demonstrate that our localization scheme achieves a better performance for certain scenario settings. The successful localization probability can be up to 90%, where the anchor rate is fixed at 10%.Entities:
Keywords: linear regression; localization; received signal strength; relational distance refinement; underwater wireless sensor network
Year: 2019 PMID: 31337074 PMCID: PMC6679299 DOI: 10.3390/s19143105
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1Deployment scenario for 3D localization scheme.
Figure 2Fitting polynomials for different orders.
Figure 3Examples of distance calibration. (a) Distance refinement results; (b) Average error versus when .
Parameter settings.
| Parameter | Value |
|---|---|
| Total number of nodes |
|
| Maximum communication radius | |
| Anchor ratio | AR = 3–12% |
| Geometrical spread coefficient |
|
| Multilateration type | Trilateration, |
| Trilateration error | |
| Maximum hop counts |
|
Figure 4Deployment scenario example.
Figure 5Attenuation coefficient versus frequency (top figure) and path loss versus distance (bottom figure).
Figure 6Localization performance of the proposed scheme. (a) CDF performance versus AR for several water depths; (b) Probability of successful localization versus localization error for several ARs.
Figure 7Comparison between the localization schemes. (a) Impact of water depth; (b) Influence of node density.